Download PDF (external access)

Proceedings of the 14th Workshop on Adaptive and Reflective Middleware, ARM 2015 - Collocated with ACM/IFIP/USENIX Middleware 2015

Publication date: 2015-12-07
Pages: 10:1 - 10:1
ISSN: 9781450337335
Publisher: ACM

Author:

Delbruel, S
Frey, D ; Taïani, F

Abstract:

© 2015 ACM. A large portion of today's Internet traffic originates from streaming and video services. Storing, indexing, and serving these videos is a daily engineering challenge that requires increasing amounts of efforts and infrastructures. One promising direction to improve video services consists in predicting at upload time where and when a new video might be viewed, thereby optimizing placement and caching decisions. Implementing such a prediction service in a scalable manner poses significant technical challenges. In this paper, we address these challenges in the context of a decentralized storage system consisting of set-top boxes or end nodes. Specifically, we propose a novel data placement algorithm that exploits information about the tags associated with existing content, such as videos, and uses it to infer the number of views that newly uploaded content will have in each country.